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Neural network-based emulation of interstellar medium models

Authors :
Centre National de la Recherche Scientifique (France)
Agence Nationale de la Recherche (France)
Ministerio de Ciencia e Innovación (España)
NASA Jet Propulsion Laboratory
Universities Space Research Association (US)
Palud, Pierre [0000-0002-5850-6325]
Einig, Lucas [0000-0003-4250-7638]
Le Petit, Franck [0000-0001-8738-6724]
Bron, Emeric [0000-0003-1532-7818]
#NODATA#
Chanussot, Jocelyn [0000-0003-4817-2875]
Pety, Jérôme [0000-0003-3061-6546]
Thouvenin, Pierre-Antoine [0000-0003-1246-9458]
Bešlić, Ivana [0000-0003-0583-7363]
Santa-María, Miriam G. [0000-0002-3941-0360]
Orkisz, Jan H. [0000-0002-3382-9208]
Ségal, Léontine E. [0009-0002-3993-5754]
Zakardjian, Antoine [0000-0002-4240-6012]
Gerin, Maryvonne [0000-0002-2418-7952]
Goicoechea, Javier R. [0000-0001-7046-4319]
Gratier, Pierre [0000-0002-6636-4304]
Levrier, François [0000-0002-3065-9944]
Liszt, Harvey S. [0000-0002-6116-1911]
Le Bourlot, Jacques [0000-0003-3920-8063]
Roueff, Antoine [0000-0002-7498-4407]
Sievers, Albrecht [0000-0003-0151-2924]
Palud, Pierre
Einig, Lucas
Le Petit, Franck
Bron, Emeric
Chainais, Pierre
Chanussot, Jocelyn
Pety, Jérôme
Thouvenin, Pierre-Antoine
Languignon, David
Bešlić, Ivana
Santa-María, Miriam G.
Orkisz, Jan H.
Ségal, Léontine E.
Zakardjian, Antoine
Bardeau, Sébastien
Gerin, Maryvonne
Goicoechea, Javier R.
Gratier, Pierre
Guzman, Viviana V.
Hughes, Annie
Levrier, François
Liszt, Harvey S.
Le Bourlot, Jacques
Roueff, Antoine
Sievers, Albrecht
Centre National de la Recherche Scientifique (France)
Agence Nationale de la Recherche (France)
Ministerio de Ciencia e Innovación (España)
NASA Jet Propulsion Laboratory
Universities Space Research Association (US)
Palud, Pierre [0000-0002-5850-6325]
Einig, Lucas [0000-0003-4250-7638]
Le Petit, Franck [0000-0001-8738-6724]
Bron, Emeric [0000-0003-1532-7818]
#NODATA#
Chanussot, Jocelyn [0000-0003-4817-2875]
Pety, Jérôme [0000-0003-3061-6546]
Thouvenin, Pierre-Antoine [0000-0003-1246-9458]
Bešlić, Ivana [0000-0003-0583-7363]
Santa-María, Miriam G. [0000-0002-3941-0360]
Orkisz, Jan H. [0000-0002-3382-9208]
Ségal, Léontine E. [0009-0002-3993-5754]
Zakardjian, Antoine [0000-0002-4240-6012]
Gerin, Maryvonne [0000-0002-2418-7952]
Goicoechea, Javier R. [0000-0001-7046-4319]
Gratier, Pierre [0000-0002-6636-4304]
Levrier, François [0000-0002-3065-9944]
Liszt, Harvey S. [0000-0002-6116-1911]
Le Bourlot, Jacques [0000-0003-3920-8063]
Roueff, Antoine [0000-0002-7498-4407]
Sievers, Albrecht [0000-0003-0151-2924]
Palud, Pierre
Einig, Lucas
Le Petit, Franck
Bron, Emeric
Chainais, Pierre
Chanussot, Jocelyn
Pety, Jérôme
Thouvenin, Pierre-Antoine
Languignon, David
Bešlić, Ivana
Santa-María, Miriam G.
Orkisz, Jan H.
Ségal, Léontine E.
Zakardjian, Antoine
Bardeau, Sébastien
Gerin, Maryvonne
Goicoechea, Javier R.
Gratier, Pierre
Guzman, Viviana V.
Hughes, Annie
Levrier, François
Liszt, Harvey S.
Le Bourlot, Jacques
Roueff, Antoine
Sievers, Albrecht
Publication Year :
2023

Abstract

The interpretation of observations of atomic and molecular tracers in the galactic and extragalactic interstellar medium (ISM) requires comparisons with state-of-the-art astrophysical models to infer some physical conditions. Usually, ISM models are too time-consuming for such inference procedures, as they call for numerous model evaluations. As a result, they are often replaced by an interpolation of a grid of precomputed models. We propose a new general method to derive faster, lighter, and more accurate approximations of the model from a grid of precomputed models. These emulators are defined with artificial neural networks (ANNs) designed and trained to address the specificities inherent in ISM models. Indeed, such models often predict many observables (e.g., line intensities) from just a few input physical parameters and can yield outliers due to numerical instabilities or physical bistabilities. We propose applying five strategies to address these characteristics: 1) an outlier removal procedure; 2) a clustering method that yields homogeneous subsets of lines that are simpler to predict with different ANNs; 3) a dimension reduction technique that enables to adequately size the network architecture; 4) the physical inputs are augmented with a polynomial transform to ease the learning of nonlinearities; and 5) a dense architecture to ease the learning of simple relations. We compare the proposed ANNs with standard classes of interpolation methods to emulate the Meudon PDR code, a representative ISM numerical model. Combinations of the proposed strategies outperform all interpolation methods by a factor of 2 on the average error, reaching 4.5% on the Meudon PDR code. These networks are also 1000 times faster than accurate interpolation methods and require ten to forty times less memory. This work will enable efficient inferences on wide-field multiline observations of the ISM.

Details

Database :
OAIster
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1431963832
Document Type :
Electronic Resource